SPEED: secure, PrivatE, and efficient deep learning

被引:0
|
作者
Arnaud Grivet Sébert
Rafaël Pinot
Martin Zuber
Cédric Gouy-Pailler
Renaud Sirdey
机构
[1] Université Paris-Saclay,
[2] CEA,undefined
[3] List,undefined
[4] Université Paris-Dauphine,undefined
[5] PSL Research University,undefined
[6] CNRS,undefined
[7] LAMSADE,undefined
来源
Machine Learning | 2021年 / 110卷
关键词
Data protection; Collaborative learning; Distributed differential privacy; Homomorphic encryption;
D O I
暂无
中图分类号
学科分类号
摘要
We introduce a deep learning framework able to deal with strong privacy constraints. Based on collaborative learning, differential privacy and homomorphic encryption, the proposed approach advances state-of-the-art of private deep learning against a wider range of threats, in particular the honest-but-curious server assumption. We address threats from both the aggregation server, the global model and potentially colluding data holders. Building upon distributed differential privacy and a homomorphic argmax operator, our method is specifically designed to maintain low communication loads and efficiency. The proposed method is supported by carefully crafted theoretical results. We provide differential privacy guarantees from the point of view of any entity having access to the final model, including colluding data holders, as a function of the ratio of data holders who kept their noise secret. This makes our method practical to real-life scenarios where data holders do not trust any third party to process their datasets nor the other data holders. Crucially the computational burden of the approach is maintained reasonable, and, to the best of our knowledge, our framework is the first one to be efficient enough to investigate deep learning applications while addressing such a large scope of threats. To assess the practical usability of our framework, experiments have been carried out on image datasets in a classification context. We present numerical results that show that the learning procedure is both accurate and private.
引用
收藏
页码:675 / 694
页数:19
相关论文
共 50 条
  • [11] Efficient and Secure Deep Learning Inference in Trusted Processor Enabled Edge Clouds
    Li, Yuepeng
    Zeng, Deze
    Gu, Lin
    Chen, Quan
    Guo, Song
    Zomaya, Albert
    Guo, Minyi
    IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, 2022, 33 (12) : 4311 - 4325
  • [12] A Blockchain and Hybrid Deep Learning for Secure and Efficient Healthcare Data Transmission and Management
    Kiruthikadevi, K.
    Sivaraj, R.
    Vijayakumar, M.
    TEHNICKI VJESNIK-TECHNICAL GAZETTE, 2024, 31 (06): : 2140 - 2145
  • [13] Efficient Multimodal Biometric Recognition for Secure Authentication Based on Deep Learning Approach
    Rajasekar, Vani
    Saracevic, Muzafer
    Hassaballah, Mahmoud
    Karabasevic, Darjan
    Stanujkic, Dragisa
    Zajmovic, Mahir
    Tariq, Usman
    Jayapaul, Premalatha
    INTERNATIONAL JOURNAL ON ARTIFICIAL INTELLIGENCE TOOLS, 2023, 32 (03)
  • [14] A secure and efficient UAV network defense strategy: Convergence of blockchain and deep learning
    Li, Zhihao
    Chen, Qi
    Li, Jin
    Huang, Jiahui
    Mo, Weichuan
    Wong, Duncan S.
    Jiang, Hai
    COMPUTER STANDARDS & INTERFACES, 2024, 90
  • [15] Machine learning based deep job exploration and secure transactions in virtual private cloud systems
    Rajasoundaran, S.
    Prabu, A., V
    Routray, Sidheswar
    Kumar, S. V. N. Santhosh
    Malla, Prince Priya
    Maloji, Suman
    Mukherjee, Amrit
    Ghosh, Uttam
    COMPUTERS & SECURITY, 2021, 109
  • [16] SAFELearn: Secure Aggregation for private FEderated Learning
    Fereidooni, Hossein
    Marchal, Samuel
    Miettinen, Markus
    Mirhoseini, Azalia
    Moellering, Helen
    Thien Duc Nguyen
    Rieger, Phillip
    Sadeghi, Ahmad-Reza
    Schneider, Thomas
    Yalame, Hossein
    Zeitouni, Shaza
    2021 IEEE SYMPOSIUM ON SECURITY AND PRIVACY WORKSHOPS (SPW 2021), 2021, : 56 - 62
  • [17] Deep Learning on Private Data
    Riazi M.S.
    Darvish Rouani B.
    Koushanfar F.
    IEEE Security and Privacy, 2019, 17 (06): : 54 - 63
  • [18] Deep Learning on Private Data
    Fasano, Andrew
    Leek, Tim
    Dolan-Gavitt, Brendan
    Bundt, Josh
    IEEE SECURITY & PRIVACY, 2019, 17 (06) : 84 - 88
  • [19] Efficient and Secure Quantile Aggregation of Private Data Streams
    Lan, Xiao
    Jin, Hongjian
    Guo, Hui
    Wang, Xiao
    IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY, 2023, 18 : 3058 - 3073
  • [20] Efficient and Secure Outsourcing of Differentially Private Data Publication
    Li, Jin
    Ye, Heng
    Wang, Wei
    Lou, Wenjing
    Hou, Y. Thomas
    Liu, Jiqiang
    Lu, Rongxing
    COMPUTER SECURITY (ESORICS 2018), PT II, 2018, 11099 : 187 - 206